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Machine Learning for Social Science

  • Development
  • Dec 22, 2024
SynopsisMachine Learning for Social Science, available at $64.99, has...
Machine Learning for Social Science  No.1

Machine Learning for Social Science, available at $64.99, has an average rating of 4, with 44 lectures, 1 quizzes, based on 4 reviews, and has 144 subscribers.

You will learn about Get started with Machine Learning Using R Programming Language Build and Test Your Own Machine Learning Model Analyze Data Using Supervised Machine Learning Models Analyze Data Using Unsupervised Machine Learning Models This course is ideal for individuals who are Researchers looking to learn and apply Machine Learning or Data Scientists looking to Master R for Machine Learning It is particularly useful for Researchers looking to learn and apply Machine Learning or Data Scientists looking to Master R for Machine Learning.

Enroll now: Machine Learning for Social Science

Summary

Title: Machine Learning for Social Science

Price: $64.99

Average Rating: 4

Number of Lectures: 44

Number of Quizzes: 1

Number of Published Lectures: 44

Number of Published Quizzes: 1

Number of Curriculum Items: 45

Number of Published Curriculum Objects: 45

Original Price: $199.99

Quality Status: approved

Status: Live

What You Will Learn

  • Get started with Machine Learning Using R Programming Language
  • Build and Test Your Own Machine Learning Model
  • Analyze Data Using Supervised Machine Learning Models
  • Analyze Data Using Unsupervised Machine Learning Models
  • Who Should Attend

  • Researchers looking to learn and apply Machine Learning
  • Data Scientists looking to Master R for Machine Learning
  • Target Audiences

  • Researchers looking to learn and apply Machine Learning
  • Data Scientists looking to Master R for Machine Learning
  • “We are bringing technology to philosophers and poets.”

    Machine Learning is usually considered to be the forte of professionals belonging to the programming and technology domain. People from arts and social science with no background in programming/technology often find it challenging to learn Machine Learning. However, Machine learning is not for technologists and programmers only. It is for everyone who wants to be a better researcher and decision-maker.

    Machine Learning is for anyone looking to model how humans and machines make decisions, develop mathematical models of decisions, improve decision-making accuracy based on data, and do science with data.

    Machine Learning brings you closer to the fascinating world of artificial intelligence. Machine Learning is a cross-disciplinary field encompassing computer science, mathematics, statistics, psychology, and management. It’s currently tough for normal learners to understand so many subjects, making Machine Learning inaccessible to many, especially those from social science backgrounds.

    We built this course, “Machine Learning for Social Scientists,” to help learners master this topic without getting stuck in its technicalities or fear of coding. This course is built as a scratch to the advanced level course for Machine Learning. All the topics are explained with the basics.The instructor creates a connection with everyday instances and fundamental tools so that learners feel connected to their previous learning. For example, we demo some Excel calculations to ensure learners can see the connection between Excel spreadsheet analysis and Machine Learning using R language.

    The course covers the following topics:

    · Fundamentals of Machine Learning

    · Applications of Machine Learning

    · Statistical concepts underlying Machine Learning

    · Supervised Machine Learning Algorithms

    · Unsupervised Machine Learning Algorithms

    · How to Use R to Implement Machine Learning Algorithms

    · How to create Training and Testing datasets and train Machine Learning Models

    · How to improve the accuracy of Machine Learning Models

    · Linear Regression Algorithm

    · Calculation of Parameters of Linear Regression Model manually, using Excel and R

    · K Nearest Neighbor (KNN) Analysis

    · Understanding Mathematics behind K Nearest Neighbor Analysis

    · Estimating sensitivity and specificity of the model

    · Implementing KNN Algorithm in R

    · Many more

    According to various estimates, Machine Learning is among the highest-paid job in the industry, and salaries of Machine Learning professionals could usually be above US$1,00,000 per annum. If you are looking forward to a course that can get you gently started with Machine Learning, this course is for you. To join the course, click on the Sign Up button and start your journey in Machine Learning from today.

    Course Curriculum

    Chapter 1: Prerequisites and Learning Outcomes

    Lecture 1: Prerequisites

    Lecture 2: Learning Outcomes

    Lecture 3: Know Your Instructor

    Chapter 2: Downloading and Installing the R Software

    Lecture 1: Understanding System Requirements for Installing R and R Studio

    Lecture 2: Installing R and R Studio in Your Computer

    Lecture 3: Getting Started with R

    Chapter 3: Introduction to Machine Learning: Core Concepts

    Lecture 1: What is Machine Learning?

    Lecture 2: Applications of Machine Learning

    Lecture 3: Machine Learning Steps

    Lecture 4: Types of Machine Learning

    Lecture 5: What is Supervised Machine Learning?

    Lecture 6: Types of Supervised Machine Learning

    Chapter 4: Supervised Machine Learning Using Linear Regression Algorithm

    Lecture 1: Introduction to Linear Regression

    Lecture 2: Applications of Linear Regression Algorithm

    Lecture 3: Understanding Equation and Formula of Linear Regression

    Lecture 4: Calculating Parameters of Linear Regression Model

    Lecture 5: What Does Y is Regressed on X Means?

    Lecture 6: Understanding Unstandardized and Standardized Beta Values

    Lecture 7: Understanding Error Term

    Lecture 8: Understanding Intercept

    Lecture 9: Understanding R Squared or Coefficient of Variation

    Lecture 10: Understanding Multiple R

    Lecture 11: Manual Calculation of Model Parameters

    Lecture 12: Calculating Model Parameters in Excel – Part 1

    Lecture 13: Calculating Model Parameters in Excel – Part 2

    Lecture 14: Calculating Model Parameters in Excel – Part 3 (Model Summary)

    Lecture 15: Implementing Linear Regression Algorithm in R

    Chapter 5: K- Nearest Neighbour Algorithm (KNN)

    Lecture 1: What is KNN Algorithm?

    Lecture 2: Applications of KNN Algorithm

    Lecture 3: Concept of Euclidean Distance

    Lecture 4: How to Calculate Euclidean Distance?

    Lecture 5: Understanding KNN Function in R

    Lecture 6: Understanding Confusion Matrix

    Lecture 7: Understanding True Positive

    Lecture 8: Understanding True Negative

    Lecture 9: Understanding False Positive

    Lecture 10: Understanding False Negative

    Lecture 11: Estimating Accuracy of KNN Model

    Lecture 12: Kappa Coefficient as an Estimate of KNN Model Accuracy

    Lecture 13: Other Measures of KNN Model Accuracy

    Lecture 14: Implementing KNN Algorithm in R

    Chapter 6: References

    Lecture 1: Reference Books

    Lecture 2: Foundation Research Papers for Learning ML

    Chapter 7: Next Step

    Lecture 1: Bonus Lecture

    Instructors

  • Machine Learning for Social Science  No.2
    Scholarsight Learning
    Courses in High Impact Research & Technology
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  • Frequently Asked Questions

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    You can view and review the lecture materials indefinitely, like an on-demand channel.

    Can I take my courses with me wherever I go?

    Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!